EM algorithm starting with E-step for parameterized Gaussian mixture models
Implements the EM algorithm for parameterized Gaussian mixture models, starting with the expectation step.
em(data, modelName, parameters, prior = NULL, control = emControl(), warn = NULL, ...)
data |
A numeric vector, matrix, or data frame of observations. Categorical variables are not allowed. If a matrix or data frame, rows correspond to observations and columns correspond to variables. |
modelName |
A character string indicating the model. The help file for
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parameters |
A names list giving the parameters of the model. The components are as follows:
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prior |
Specification of a conjugate prior on the means and variances. The default assumes no prior. |
control |
A list of control parameters for EM. The defaults are set by the call
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warn |
A logical value indicating whether or not a warning should be issued
when computations fail. The default is |
... |
Catches unused arguments in indirect or list calls via |
A list including the following components:
modelName |
A character string identifying the model (same as the input argument). |
n |
The number of observations in the data. |
d |
The dimension of the data. |
G |
The number of mixture components. |
z |
A matrix whose |
parameters |
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loglik |
The log likelihood for the data in the mixture model. |
control |
The list of control parameters for EM used. |
prior |
The specification of a conjugate prior on the means and variances used,
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Attributes: |
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msEst <- mstep(modelName = "EEE", data = iris[,-5], z = unmap(iris[,5])) names(msEst) em(modelName = msEst$modelName, data = iris[,-5], parameters = msEst$parameters) do.call("em", c(list(data = iris[,-5]), msEst)) ## alternative call
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